Data Construction Method for Small Sample Sets
by Wang, Hsiao-Fan
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Description
Data Construction Method (DCM) based on the multiset division is proposed. The DCM can not only generate addition data within the domain value of the given sample for revealing the data's patterns, but also creates the membership function from the generated data for further applications. In this way, the DCM is taken to filling up the information gaps caused by small-sample-sets. To demonstrate the effectiveness of DCM, after presenting the DCM's theoretic background, properties, and algorithm, we compared the DCM with several existing approaches in estimating the population mean and improving the supervised neural network learning performance. The results show that the DCM performs better in a comparative manner. To show its applicability, we have applied the membership function derived from the DCM data to the studies of predicting the severe earthquakes in Taiwan and forecasting the psychotic episode of individual schizophrenics. The results have shown that the DCM can provide appropriate references for prediction from both spatial and temporal small data sets.
Contributors
Author:
Wang, Hsiao-Fan
Huang, Chun-Jung
Further information
Biography Artist:
Hsiao-Fan Wang is the Distinguished Chair Professor of National Tsing Hua University, Taiwan, ROC. She has been awarded the distinguished researcher of NSC in Taiwan and is the editor of several international journals. Her research interests are in MCDM, Fuzzy Set Theory, Rare and Huge Data Analysis and Green Value Chain Management.
Language:
English
Edition:
1/2012
Number of Pages:
172
Media Type:
Softcover
Publisher:
LAP Lambert Academic Publishing
Master Data
Product Type:
Paperback book
Release date:
August 30, 2010
Package Dimensions:
0.213 x 0.15 x 0.015 m; 0.272 kg
GTIN:
09783838398372
DUIN:
J7R3JROL7J2
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